Tao Linfeng, Zhu Yue, Liu Jun
Department of Critical Care Medicine, Suzhou Municipal Hospital, Suzhou Clinical Medical Center of Critical Care Medicine, The Affiliated Suzhou Hospital of Nanjing Medical University, Gusu School of Nanjing Medical University, Suzhou, China.
Department of Breast and Thyroid Surgery, The Affiliated Suzhou Hospital of Nanjing Medical University, Gusu School, Nanjing Medical University, Suzhou, China.
Front Genet. 2023 Mar 16;14:1129476. doi: 10.3389/fgene.2023.1129476. eCollection 2023.
Sepsis, a serious inflammatory response that can be fatal, has a poorly understood pathophysiology. The Metabolic syndrome (MetS), however, is associated with many cardiometabolic risk factors, many of which are highly prevalent in adults. It has been suggested that Sepsis may be associated with MetS in several studies. Therefore, this study investigated diagnostic genes and metabolic pathways associated with both diseases. In addition to microarray data for Sepsis, PBMC single cell RNA sequencing data for Sepsis and microarray data for MetS were downloaded from the GEO database. Limma differential analysis identified 122 upregulated genes and 90 downregulated genes in Sepsis and MetS. WGCNA identified brown co-expression modules as Sepsis and MetS core modules. Two machine learning algorithms, RF and LASSO, were used to screen seven candidate genes, namely, STOM, BATF, CASP4, MAP3K14, MT1F, CFLAR and UROD, all with an AUC greater than 0.9. XGBoost assessed the co-diagnostic efficacy of Hub genes in Sepsis and MetS. The immune infiltration results show that Hub genes were expressed at high levels in all immune cells. After performing Seurat analysis on PBMC from normal and Sepsis patients, six immune subpopulations were identified. The metabolic pathways of each cell were scored and visualized using ssGSEA, and the results show that CFLAR plays an important role in the glycolytic pathway. Our study identified seven Hub genes that serve as co-diagnostic markers for Sepsis and MetS and revealed that diagnostic genes play an important role in immune cell metabolic pathway.
脓毒症是一种可能致命的严重炎症反应,其病理生理学尚不清楚。然而,代谢综合征(MetS)与许多心血管代谢风险因素相关,其中许多在成年人中高度普遍。几项研究表明脓毒症可能与MetS有关。因此,本研究调查了与这两种疾病相关的诊断基因和代谢途径。除了脓毒症的微阵列数据外,还从GEO数据库下载了脓毒症的PBMC单细胞RNA测序数据和MetS的微阵列数据。Limma差异分析在脓毒症和MetS中鉴定出122个上调基因和90个下调基因。WGCNA将棕色共表达模块确定为脓毒症和MetS的核心模块。使用两种机器学习算法RF和LASSO筛选出七个候选基因,即STOM、BATF、CASP4、MAP3K14、MT1F、CFLAR和UROD,所有这些基因的AUC均大于0.9。XGBoost评估了枢纽基因在脓毒症和MetS中的联合诊断效能。免疫浸润结果表明,枢纽基因在所有免疫细胞中均高表达。对正常人和脓毒症患者的PBMC进行Seurat分析后,鉴定出六个免疫亚群。使用ssGSEA对每个细胞的代谢途径进行评分和可视化,结果表明CFLAR在糖酵解途径中起重要作用。我们的研究确定了七个作为脓毒症和MetS联合诊断标志物的枢纽基因,并揭示了诊断基因在免疫细胞代谢途径中起重要作用。